Neuroanatomical markers of psychotic experiences in adolescents: A machine-learning approach in a longitudinal population-based sample
Kenney, Joanne P M; Milena Rueda-Delgado, Laura; Hanlon, Erik O; Jollans, Lee; Kelleher, Ian; Healy, Colm; Dooley, Niamh; McCandless, Conor; Frodl, Thomas; Leemans, Alexander; Lebel, Catherine; Whelan, Robert; Cannon, Mary
(2022) NeuroImage. Clinical, volume 34, pp. 1 - 9
(Article)
Abstract
It is important to identify accurate markers of psychiatric illness to aid early prediction of disease course. Subclinical psychotic experiences (PEs) are important risk factors for later mental ill-health and suicidal behaviour. This study used machine learning to investigate neuroanatomical markers of PEs in early and later stages of adolescence.
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Machine learning using logistic regression using Elastic Net regularization was applied to T1-weighted and diffusion MRI data to classify adolescents with subclinical psychotic experiences vs. controls across 3 timepoints (Time 1:11-13 years, n = 77; Time 2:14-16 years, n = 56; Time 3:18-20 years, n = 40). Neuroimaging data classified adolescents aged 11-13 years with current PEs vs. controls returning an AROC of 0.62, significantly better than a null model, p = 1.73 e-29. Neuroimaging data also classified those with PEs at 18-20 years (AROC = 0.59;P = 7.19 e-10) but performance was at chance level at 14-16 years (AROC = 0.50). Left hemisphere frontal regions were top discriminant classifiers for 11-13 years-old adolescents with PEs, particularly pars opercularis. Those with future PEs at 18-20 years-old were best distinguished from controls based on left frontal regions, right-hemisphere medial lemniscus, cingulum bundle, precuneus and genu of the corpus callosum (CC). Deviations from normal adolescent brain development in young people with PEs included an acceleration in the typical pattern of reduction in left frontal thickness and right parietal curvature, and accelerated progression of microstructural changes in right white matter and corpus callosum. These results emphasise the importance of multi-modal analysis for understanding adolescent PEs and provide important new insights into early phenotypes for psychotic experiences.
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Keywords: Adolescents, Diffusion MRI, Machine learning, Neuroanatomy, Psychotic experiences, Structural MRI, Radiology Nuclear Medicine and imaging, Neurology, Clinical Neurology, Cognitive Neuroscience
ISSN: 2213-1582
Publisher: Elsevier
Note: Funding Information: This project was funded by a European Research Council Consolidator Award to MC (iHear 724809). JPMK was supported by the European Research Council and Irish Research Council (project number: GOIPD/2019/708). The funding sources had no role in the design or conduct of the study: collection, management, data analysis, interpretation, preparation, review, approval of the manuscript, or decision to submit for publication. Publisher Copyright: © 2022
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